深度学习辅助设计用于高性能中波红外偏振器的双层纳米线光栅

IF 6.4 3区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Advanced Materials Technologies Pub Date : 2024-05-16 DOI:10.1002/admt.202302176
Junghyun Lee, Junhyuk Oh, Hyung‐gun Chi, Minseok Lee, Jehwan Hwang, Seungjin Jeong, Sang-Woo Kang, Haeseong Jee, Hagyoul Bae, Jae‐Sang Hyun, Jun Oh Kim, Bongjoong Kim
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引用次数: 0

摘要

光学超材料通过在纳米尺度上操纵光与物质的相互作用,超越了衍射极限,从而彻底改变了成像能力。双层纳米线光栅配置作为高性能偏振成像系统的特殊元件,展现出巨大的潜力。然而,预测电磁响应的传统计算方法既耗时又耗力,因此,通过迭代设计、分析和制造过程实现实际应用仍具有挑战性。本文介绍了一种基于深度学习的设计流程,利用在有限元法(FEM)模拟基础上训练的人工神经网络(ANN)来预测基于双层纳米线光栅的电磁响应。研究通过纳米压印双层纳米线光栅验证了预测结果,证明了人工神经网络预测结果的可靠性。此外,研究还确定了对横向磁(TM)和横向电(TE)传输有重大影响的关键几何参数。ANN模型能有效地针对特定的中波红外(MWIR)波长进行设计,为快速设计和优化高性能偏振器的超材料提供了实用工具。
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Deep Learning‐Assisted Design of Bilayer Nanowire Gratings for High‐Performance MWIR Polarizers
Optical metamaterials have revolutionized imaging capabilities by manipulating light‐matter interactions at the nanoscale beyond the diffraction limit. Bilayer nanowire grating configurations exhibit significant potential as exceptional elements for high‐performance polarimetric imaging systems. However, conventional computational approaches for predicting electromagnetic responses are time‐consuming and labor‐intensive, and thereby, the practical implementation remains challenging through an iterative design, analysis, and fabrication process. Here, a deep learning‐based design process is presented utilizing an artificial neural network (ANN) trained on finite element method (FEM) simulations that enables the prediction of bilayer nanowire gratings‐based electromagnetic responses. The study validates predictions through nanoimprinted bilayer nanowire gratings, demonstrating the reliability of the ANN's predictions. Furthermore, the research identifies critical geometric parameters significantly influencing transverse magnetic (TM) and transverse electric (TE) transmission. The ANN model effectively tailors design for specific mid‐wavelength infrared (MWIR) wavelengths, which may provide a practical tool for rapidly designing and optimizing metamaterial for high‐performance polarizers.
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来源期刊
Advanced Materials Technologies
Advanced Materials Technologies Materials Science-General Materials Science
CiteScore
10.20
自引率
4.40%
发文量
566
期刊介绍: Advanced Materials Technologies Advanced Materials Technologies is the new home for all technology-related materials applications research, with particular focus on advanced device design, fabrication and integration, as well as new technologies based on novel materials. It bridges the gap between fundamental laboratory research and industry.
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